The stochastic network calculus (SNC) holds promise as a versatile and uniform framework to calculate probabilistic performance bounds in networks of queues. A great challenge to accurate bounds and efficient calculations are stochastic dependencies between flows due to resource sharing inside the network. However, by carefully utilizing the basic SNC concepts in the network analysis the necessity of taking these dependencies into account can be minimized. To that end, we unleash the power of the pay multiplexing only once principle (PMOO, known from the deterministic network calculus) in the SNC analysis. We choose an analytic combinatorics presentation of the results in order to ease complex calculations. In tree-reducible networks, a subclass of general feedforward networks, we obtain an effective analysis in terms of avoiding the need to take internal flow dependencies into account. In a comprehensive numerical evaluation, we demonstrate how this unleashed PMOO analysis can reduce the known gap between simulations and SNC calculations significantly, and how it favourably compares to state-of-the art SNC calculations in terms of accuracy and computational effort. Motivated by these promising results, we also consider general feedforward networks, when some flow dependencies have to be taken into account. To that end, the unleashed PMOO analysis is extended to the partially dependent case and a case study of a canonical example topology, known as the diamond network, is provided, again displaying favourable results over the state of the art.
翻译:孔径网络计算仪(SNC)作为计算队列网络中概率性能界限的多功能和统一框架很有希望。准确界限和有效计算的一个重大挑战是,由于网络内资源共享而导致的流量之间互不兼容性。然而,通过在网络分析中仔细利用基本的 SNC 概念,可以最大限度地减少将这些依赖性考虑在内的必要性。为此,我们放出工资多重氧化分析的能量,只能在SNC分析中一次原则(PMO,从确定性网络计算仪中知道)中一次(PMO,在确定性网络计算中知道的)下。我们选择了对结果的解析组合,以方便复杂的计算。在可植树减少的网络中,一般进料网络的亚细分类,我们得到有效分析,避免将内部流量依赖性因素考虑在内。在综合数字评估中,我们证明这种释放的PMOO分析能够显著地缩小已知的模拟和SNC计算之间的差距,以及它与SNC状态相比,如何有利地显示结果的展示性组合组合组合结果,在将某些预测性网络的精度和计算结果中,我们考虑这些预测的尾端端端端分析会考虑。